US3665419A - Apparatus for determining shape - Google Patents

Apparatus for determining shape Download PDF

Info

Publication number
US3665419A
US3665419A US800222A US3665419DA US3665419A US 3665419 A US3665419 A US 3665419A US 800222 A US800222 A US 800222A US 3665419D A US3665419D A US 3665419DA US 3665419 A US3665419 A US 3665419A
Authority
US
United States
Prior art keywords
memory
region
matrix
area
elements
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Expired - Lifetime
Application number
US800222A
Inventor
Frederick Hartmann
Billy J Huffmann
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Boeing North American Inc
Original Assignee
North American Rockwell Corp
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by North American Rockwell Corp filed Critical North American Rockwell Corp
Application granted granted Critical
Publication of US3665419A publication Critical patent/US3665419A/en
Anticipated expiration legal-status Critical
Expired - Lifetime legal-status Critical Current

Links

Images

Classifications

    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T11/002D [Two Dimensional] image generation
    • G06T11/003Reconstruction from projections, e.g. tomography
    • G06T11/006Inverse problem, transformation from projection-space into object-space, e.g. transform methods, back-projection, algebraic methods

Landscapes

  • Physics & Mathematics (AREA)
  • Engineering & Computer Science (AREA)
  • General Physics & Mathematics (AREA)
  • Theoretical Computer Science (AREA)
  • Algebra (AREA)
  • Mathematical Analysis (AREA)
  • Mathematical Optimization (AREA)
  • Mathematical Physics (AREA)
  • Pure & Applied Mathematics (AREA)
  • Image Generation (AREA)

Abstract

A superposition algorithm is presented for reconstruction of a closed curve from length and width values. That is, the ''''thickness'''' of the curve as viewed from two intersecting directions. A special purpose digital computer is described for automatically reconstructing the shape of closed curves. The computer performs the algorithm steps, displays the results and permits easy correction of input data. A memory is employed in the computer with a plurality of memory planes each in the form of a matrix which is a spatial analogy of a matrix in which a closed curve lies. The computer operates by an element by element scan of these matrixes, reading memory content, counting elements, or entering results as determined by the operating state of the computer.

Description

United States Patent Hartmann et a].
[451 May 23, 1972 [54] APPARATUS FOR DETERIVHNING SHAPE [73] Assignee: North American Rockwell Corporation [22] Filed: Feb. 18, 1969 [21 Appl. No.: 800,222
3,376,555 4/]968 Crane et a]. ..340/l72.$
Primary Examiner-Gareth D. Shaw Assistant Examiner-Paul R. Woods Attorneywilliam R. Lane, Allan Rothenberg and Richard D.
Seibel ABSTRACT A superposition algorithm is presented for reconstruction of a closed curve from length and width values. That is, the thickness" of the curve as viewed from two intersecting directions. A special purpose digital computer is described for automatically reconstructing the shape of closed curves. The computer performs the algorithm steps, displays the results and permits easy correction of input data. A memory is employed in the computer with a plurality of memory planes each in the form of a matrix which is a spatial analogy of a matrix in which a closed curve lies. The computer operates by an ele ment by element scan of these matrixes, reading memory content, counting elements, or entering results as determined by the operating state of the computer.
17 Claims, 80 Drawing Figures B V B DATA INPUT .25
PROGRAM 7 MEMORY STE: MEMORY CONTROL 27- CONTROL MEMORY O'SPLAY SELECTOR DISH," sweep rz CONTROL x,Y CgIIvTROL) PATENTED MAY 2 3 1912 saw 01 ur 14 FIG. I
A m N S F. T C N U V m 0L H RB F m a A Y B 3 2 FIG. 2
ATTORNEY sum 02 0F 14 PATENTEDHIY 2 3 I972 4 6 7 6 3 I F I6. 40
a b c d e f g 4 6 7 6 3 I FIG. 46
INVENTORS. FREDERICK HARTMANN BILLY J. HUFFMAN ATTORNEY 234 m I. 0. O0 O O O 234567 9 O e I I A d I! f 3 e 6 4 c9 b nd M6 O C 6 MO 2 b 4 F 4 O r F V I,
dbcdefg FIGZ4B abcdefg PATENTEHMAY 23 m2 SHEET 03 0F 14 234567 9 0000 0 1000 I O 600 IIII dIIIIIIIOO 0 IIII 000 II 0000 2 5652 1234567 0000 0 7000 I 0 e0 IIII d I I I I 0 O c0 I 000 II 0000 2245652 3456789 0000 0 000 I 0 8 IIII .UI. I I I I II 2 CO I, 000 II 0000 45652 46763 F/G.4J
F/6.4H F/G.4I
abcdefg abcdefg I23456789 00000 900 O000 0 ooo o IIIIIII00 O OO 000I.I II00 000 0 OO 45 52 234567 9 00 0 00.0. 0 0 I 0 OOO III III I OO 000 0 0 0000 o 45652 23 567 0000 0 000 I 0 OOO IIIII I IIIIII OII IIIIO 0- 00 II 0000 I2245652I F/GZ4K ubcdefig 23456789 000 0 000 I 0 O QQ Ill/11100 O00 IIIII I 000 II 000 45652 23 56 789 0000 000 I 0 0 III! {III/I100 0 I/ll 000 II 000 45652 234567 9 000O0 000 OOOOOIIIO 000 I IIIIII 00 OOOIIIIOO 00O0!0 000 22 5 2 FIG. 4N
INVINIURS. FREDERICK HARTMANN BY 1 BILLY J. HUFFMAN ATTORNEY a b c d e f g CONTROL FIG. 45
PROGRAM DATA INPUT -2 MEMORY DISPLAY SWEEP cam 14 a b c d e f g I 0 O O I I I O O 3 SHEET I'IO 00 CONTROL (X,Y CONTROL) FIG.5
FIG. 45
I 0 O O 2 O O O 2 O O O DISPLAY PATENTEU MAY 23 I97? 0 b c d e f g I O O 0 l I I 0 O 2 I I O.
C O O FIG. 40
MEMORY MEMORY SELECTOR (Z CONTROL) I O O O 2 O O O 2 O O O ROW Ay INVENTURS. Ax FREDERICK HARTMANN 4 COLUMN BILLY J. HUFFMAN ATTORNEY CORE 2 CORE 4 CORE 3 F COUNT I II FIG. 98
FIG. 8C FIG. 8D
sum 07 nr m SCAN SEQUENCE INPUT DATA FIG. 90
CORE I 0 0 I 0 o 9 9.... Q9.
1/) AND a O O I O O O O I O 0 I I OM I I.Im
CORE 2 l Om 0 VOEO OUO F COUNT FIG. 9A
INPUT 5 COUNT DATA 6 COUNT FIG. 8A FIG. 8B
SCAN SEQUENCE FIG. 9C
INPUT DATA SCAN SEQUENCE CORE I O O I O O wvmmns.
FREDERICK HARTMANN BY BILLY J. 25mm ATTORNEY N\N\f N\f\N FIG. :00
FIG. IOA FIG. IOB
SCAN SEQUENCE CORE 5 (3) AND (4) FIG. l/D
CORE 2 FIG. I28
INVL'NT JRS. FREDERICK HARTMANN BILLY J. HUFFMAN AMMQAJ Law ATTORNEY U8UF14 SHEU CORE 4 CORE 3 6 I m H 000 l/ 0 90%; T 1 Ti 1 B 00000 F 00// l I 6 l A. 3 %00000 0 I \{i it 0 Ti 0 vi 0 F c c 00000 00 O 00 m l :4. [I 0 M000 1/ 0 6 0000 W u H FL 0 N 444 0 r G 0 o o o W1 i??? W H M444 44 w V w M qakvW 5 I M 4 4 0 0 D MP U V 6 mm? 3 2 0 P0 0 w 44444 L0 00 00F 43 0 10 6 m444 o I! H 23 -43Z22 PATENTEUMM 23 m2 SCAN SEQUENCE CORE 5 FIG. //C
FIG. /2A
SCAN SEQUENCE PATENTEDMM 2 3 1972 sum 09 F 14 CORE 6 F cou/vr m Q00 00 m 0W00 00 Odom 00 W h 7 0 00 712 I0 0 0 0 00 4 2 7 0 O O OOO '32 0 0 0 0 00 3 40 00 Z 22 0 N A c SEQUENCE FIG. I
F COUNT FIG. I26
3 cou/vr P5 CORE 6 C ORE 6 bmh 4 r0 Fr le V2 0 wmbvw z 2% 2p wwa 2 0 2 SCAN SEQUENCE I l 0 I 0 0 01AM a w ,0 w a F L WMWWMM WW I 0 ,l I
SCAN SEQUENCE FIG. /3A FIG I38 FIG. /3C FIG. I
COREG P7 FIG. I4A
CORE I P7 FIG. I
ATTORNEY APPARATUS FOR DETERMINING SHAPE BACKGROUND In many situations it is desirable to know the geometry of a body that is hidden from direct examination and measurement. Thus, for example, the geometry of a bone hidden beneath the flesh may be of interest when direct measurements are not available in the absence of surgery. Similarly, in the medical field the location and geometry of various organs and tumors is often of interest. Similarly, in the field of nondestructive testing it is often important to know the size, shape mnl location of inclusions, voids, or the like in a structure such as a casting, a weld-bead or other object.
In order to find the shape of a three dimensional object a number of parallel cross-sections may be obtained and integrated to define the entire shape. Co-pending U. S. Pat. application Ser. No. 800,179, filed Feb. 18, 1969 entitled, MEA- SURING METHOD AND APPARATUS by Frederick Hart mann and assigned to North American Rockwell Corporation, assignee of this application, and which is hereby incorporated by reference with fullforce and effect as if set forth in full herein, described, illustrates, and claims a technique for finding the thickness or breadth of a cross-section in each of two directions common to a plane defining a cross-section of an object. In addition the aforementioned copending application presents an algorithm for determining the shape of the crosssection given only the width of that cross-section in two mutually angulated directions. As is pointed out therein this algorithm is readily implemented by a hand graphical method and by several types of programs for several general purpose computers for determining the shape of the cross section. The general purpose computer solution becomes increasingly difficult when input data errors for the height and width of the object are present due to film variations, density measurement uncertainties, digitization roundoff, and other similar factors. In many practical situations in order to accomodate inconsistencies in the input data, error correction requires human judgment based on partial solutions obtained. A general purpose computer solution is deemed unsatisfactory for some situations because it does not permit convenient and economical human interaction based on displayed results. It is therefore desirable to provide a special purpose computer which can determine the shape of a closed curve from height and width data alone, display the resulting shape at various stages during the computation and permit easy correction of input data if desired, during solution ofa problem.
SUMMARY OF THE INVENTION A digital apparatus is provided in practice of this invention comprising a memory matrix analogous to a matrix in which a curve lies, means for identifying a first sub-region of the memory matrix necessarily within a region bounded by elements having a direct spatial relation to the curve, means for identifying a second sub-region of the memory matrix necessarily without the region bounded by the curve, means for converging the first and second subregion for defining the boundary of the curve in the matrix, and means for presenting the results in a display matrix.
DRAWINGS Many of the attendent advantages of this invention will be readily appreciated as the same becomes better understood by reference to the following detailed description when considered in connection with the accompanying drawings wherein:
FIG. 1 illustrates a typical hidden object and thickness measurements made thereof;
FIG. 2 illustrates a typical cross-section of a hidden object;
FIG. 3 illustrates the same cross-section as FIG. 2 except in quantized or digitized form;
FIGS. 4A to 45 comprise a stepby-step reconstruction of the typical cross-section of FIG. 3;
FIG. 5 illustrates in block diagram form a digital computer for reconstructing the shape of an object;
FIGS. 60 and 6b illustrates additional detailed blockdiagram form of the digital computer of FIG. 5;
FIG. 7 illustrates a display screen array for a sample crosssection employed to describe operation of the digital computer;
FIGS. 8A to 8D illustrate operations in the digital computer in a first state P0 during data input;
FIGS. 9A to 9D illustrate operations in the digital computer in a second state PI during data input;
FIGS. 10A to illustrate operations of the digital computer in a third state P2 wherein points within a curve are found;
FIGS. 11A to 11D illustrate operations of the digital computer in a fourth state P3 wherein points without a curve are found;
FIGS. 12A to 12D illustrate operations of the digital computer memory in fifth state P4 wherein points without a curve are found;
FIGS. 13A to DD illustrate operations of the digital computer in sixth and seventh state P5 and P6 wherein additional points without curves are found;
FIGS. MA to 14D illustrate operations of the digital computer in an eighth state P7 wherein input data is added to memory contents stored in previous operations;
FIGS. 15A and 15B illustrate operations of the digital computer in a ninth state P8 wherein input data is added to memory contents stored in previous operations;
FIGS. 16A and 16B illustrate operations of the digital computer in a tenth state P9 wherein input data is added to memory contents stored in previous operations;
FIGS. 17A and 17B illustrate operations of the digital computer in an eleventh state P10 wherein input data is added to memory contents stored in previous operations;
FIGS. [8A to 18G illustrate operations of the digital computer in a twelfth state P11 wherein additional points within a curve are found;
FIG. 19 comprises a timing diagram of exemplary computer operations;
FIG. 20 comprises a timing diagram for start of computer operations;
FIG. 21 illustrates the display intensity control;
FIG. 22 shows a display of the cross-section of a finger; and
FIGS. 23a to 23f illustrate a step-by-step reconstruction from three viewing directions.
Throughout the drawings like reference numerals refer to like parts.
DESCRIPTION TABLE I Croslsl-section reconstruction algo- (pages 8 to 13; FIGS. 1 to 3.)
rit In.
Algorithm and sample solution. (Pages 14 to 33; FIGS. 4A to 48.)
Specia purpose computer descrip- (Pages 3310 41; FIGS. 5 and 6.)
tio
Computer operating steps. (Pages 41 to 46.) N omenclsture [Pages 46 to 57) Circuit design and components. (PIgOS 58 to 80; FIGS. 6, 19 and 0. Program counter states (Pages 80 to 86; FIG. 7.)
States P0 and PI. (Pages 86 to 91; FIG S. 8 and 9.) State P2 (Pages 91 to 94; FIG. I0.) States P3 through PB (Pages 94 to I03; FIGS. 11 to 13.) States P7 through P10.
(Pages 103 to I17; FIGS. 14 to I7.)
State PII (Pages II? to I20; FIG. I8.) Display intensity controL. (Pages to 131; FIG. 2L Logical equations... (Pages 131 to 140.)
Multiple views (Pzaagfs to 149; FIGS. 22 and CROSS-SECTION RECONSTRUCTION ALGORITHM FIG. 1 illustrates schematically a hidden object for which it is desired to obtain sufi'icient information to reconstruct the shape of the hidden object. As illustrated in this Figure a body 10 is hidden within an opaque surrounding material 1 l which, for purposes of illustration, is shown as if transparent. The hidden body 10 has an irregular and unknown shape and the body 11 containing the hidden object is preferably of a regular shape or the shape must at least be known or determinable. In order to gain information concerning the hidden body 10 the article is illuminated with an X-ray beam 12 and an image 13 is obtained on a photographic film 14 with the image 13 having photographic density variations corresponding to absorption of the X-rays by the hidden body 10. For purposes of illustration, the image 13 is shown in the manner of a contour map with the contour lines following paths of equal photographic density. It will be apparent that the fonnation of an image depends on the body 10 having a different X-ray absorptivity from the surrounding material ll as is the case in practical problems. The absorption of the hidden body may be higher, as in the case ofbone flesh, or it may be lower, as in the case of a void in a casting, and the principle is equally applicable. It should also be apparent that in lieu of an X-ray beam 12 that a beam of ultrasonic energy, nuclear radiation, or the like can be employed.
The image 13 can also be a positive or negative image but for convenience of discussion will be considered to have an increasing density from an edge toward the center, corresponding to an increasing thickness of a hidden body 10 from an edge toward the center. It will be apparent that such a convexity will be present in regular hidden bodies, and that near the edge, the X-ray beam would pass through a relatively larger proportion of the surrounding material 11 and a relatively smaller portion of the hidden body 10 than near the center of the body where the X-ray beam would pass through a relatively smaller proportion of the surrounding material 11 and a relatively greater proportion of the hidden body 10.
It will be apparent that in order to reconstruct the entire shape of a hidden body it is only necessary to define the shape of a plurality of parallel cross-sections of that body and then reassemble these reconstructed cross-sections. For purposes of exposition herein the problem can then be considered as one of defining the shape of a closed curve in a single plane, always re-calling that the shape of a three-dimensional body is defined by a plurality of such closed curves.
In order to obtain data for solution of a closed curve in a plane, e.g., for determination of the shape of the cross-section of the body X in plane ABCD, measurement is made of the photographic density of the image 13 along a line AB across the image. Such a density scan of the image can readily be made with conventional densitometers or preferably, for most purposes, a microdensitometer which measures the photographic density in a very small area. A densitometer scan made across the image yields a curve 16 of density versus distance which is obviously a measure of the X-ray absorptivity or thickness of the hidden body in a plane ABCD.
In a similar manner the hidden body is illuminated with an X-ray beam 17 in a direction angulated relative to the X-ray beam 12. For purpose of illustrations and simplicity the X-ray beams 12 and 17 are orthogonal, however, as will appear hereinafter any angular relationship therebetween can be employed without deviating from the principles of this invention. The X-ray beam 17 forms an image 18 of the hidden body 10 on a photographic film l9 placed on the opposite side thereof. In FIG. 1 the image 18 is drawn in the form of a contour map of the thickness of the hidden body in a direction along the X- ray beam 17. In the same manner as hereinabove described a microdensitometer scan is made along a line BC across the image 18 thereby yielding a density versus distance curve 21 representative of the thickness of the body 10 in the plane ABCD as viewed in the direction of the X-ray beam 17. Since the exposures may differ and the film density is not linearly related to thickness of the body, the curves must be transformed for film response as pointed out in the aforementioned copending application to find the thickness curve for the body.
The heights or thicknesses of the curves 16 and 21 need not be, and seldom are. equal since the hidden body is being viewed from two different directions. It will be apparent, however, that the area under the curve 16, after transformation to find thickness will equal the area under the curve 21 also transformed for thickness since both thickness curves represent the quantity of material in the body 10 located in the plane ABCD.
A typical closed curve problem is illustrated in slightly different form in FIG. 2. In this figure a closed curve 22 of the form F(x,y)=0, lies in an xy plane, and for purposes of convenience, orthogonal x and y axes are selected to lie tangent to the closed curve 22. The horizontal width of the region enclosed by the curve 22 is plotted along the y axis as the curve A(y); that is, the length of a line 23 across the closed curve 22 is the same as the width of the curve A( y) at the same y coordinate. In a similar manner the vertical length or height of the region enclosed by the curve 22 is plotted along the x axis as the curve A(x).
The basic problem to be solved is then: given only the curves A(y) and A(.x), how can one reconstruct the original curve F(x,y)=0? That is, given only two thickness profiles, how does one determine the cross-section of the object in a plane common to the two thickness profiles? A constraint on solution of the problem in the simple case set forth initially for purposes of exposition is that the closed curve has no more than two intersection points with any straight line in either the x or y direction. That is, the curve is not reentrant or concave in either the x or y direction alone. This property of the curve, which will be called hereinafter any-convexity, is less restrictive than general convexity. It will be apparent from an examination of the closed curve 22 that concavities do occur in the curve in the upper left and lower right positions, respectively, however, there is no concavity in either the x or y direction. In many practical problems in which a concavity does occur in a closed curve, rotation of the x and y axes or examination of the curve in non-orthogonal directions will satisfy the aforementioned constraint.
The curve 22 in FIG. 2 and the curves A( y) and A(.x) are continuous or analog curves and in order to best solve the problem of reconstructing a curve it is preferable to express the problem in a digital form. For this reason a rectangular grid or matrix of any desired degree of fineness may be superimposed on the curve of FIG. 2 and the cure quantized according to the number of unit squares therein. Thus the region inside the curve 22 of FIG. 2 is changed as illustrated in H6. 3 to a similar region 24 comprising unit squares, with gross boundaries of the curve 24 approximating the shape of the curve 22. It will be apparent that a finer grid than illustrated in FIG. 3 will more closely approximate an analog curve, however, for purposes of exposition, an approximation as presented in FIG. 3 is adequate. In a similar manner the analog curves A(x) and A(y) in FIG. 2 are converted to digital or quantized curves A, and A as illustrated along the x and y axes respectively, in FIG. 3. The quantized curves A and A, are also expressed as numerical values along the x and y axes, respectively, representing the total number of squares within the region 24in the 16' column and 1 row, respectively.
Hereinafter, the squares inside of a closed curve will be designated as containing a l and those squares outside of the closed curve will be designated as containing a 0. This is not only a convenient means for distinguishing squares inside the curve from those outside and thereby defining the shape, but is a convenient nomenclature for the binary special purpose digital computer hereinafter described.
ALGORITHM AND SAMPLE SOLUTION A very efiicient algorithm has been developed for solution of the problem of determination of the shape of the closed curve or cross-section when only the thickness curves, A I and A, are known. The algorithm may be solved by hand, but is more readily applied to a digital computer for rapid solution of problems when a large number of units or quantized steps are in the A, and A input curves. The algorithm involves the identification of elements (or squares in the matrix of FIG. 3) for which either a l or is confirmed; that is, identification of those squares which must be either inside or outside of the closed curve. The algorithm is a superposition technique which comprises the application of several rules based mostly on the intersection properties of two sets. As pointed out hereinafter the quantized A and A, values for each line can be considered as a contiguous set of ls for a convenient nomenclature. The first two rules of the algorithm are:
1. Insert proven ls in those spaces where the set of ls in the respective column or row adjacent one margin overlaps the same set of ls adjacent the opposite margin (at the center of all columns and rows in which more than half the length is occupied).
2. Insert wherever possible proven 0's at the ends of those columns and rows where proven ls have been found before by Rule (1) and the set of ls in the respective column or row cannot extend to the margin from the most remote proven I.
These rules are explained, along with others hereinafter presented, by reference to a specific problem. namely, that of finding the shape of a closed curve such as illustrated in FIG. 3. The step-by-step solution of this problem is set forth in FIG. 4A to FIG. 4R. The basic problem to be solved is illustrated in FIG. 4A wherein the width of the curve A, in the x direction is stated as a series of numerical values along the left margin of a rectangular 7X9 matrix of empty squares, i.e., the numerical values stated along the left side are those of the curve A, of FIG. 3. Similarly, along the bottom margin of FIG. 4A are numerical values representing the height of the closed curve A of FIG. 3 in the y direction, that is, the numerical values for the height of the curve A,
FIG. 4A also introduces some additional nomenclature of assistance in exposition of the above rules and others hereinafter set forth. The seven columns in the matrix of FIG. 4A are lettered from left to right, a through 8 along the top margin and the rows are numbered from top to bottom, 1 through 9 along the right margin so that any square in the matrix can be readily identified. Thus, for example, the lower right hand square in the matrix is identified as g9. The total width of the matrix along an x direction is identified as n for exposition of some of the rules hereinafter stated and the height of the matrix in the y direction is stated as m for similar reasons. It will be apparent that in the matrix of FIG. 4A the width n equals 7 units and the height m equals 9 units. In application of the rules, the columns and rows are treated similarly and "line" may be used hereinafter to refer to a column or row as may be applicable.
In FIG. 4B Rule (1) is applied to the columns. Beginning at the left side of the matrix column c is the first column in which the number of occupied squares (6) is greater than one-half of the length of the column 9. There is, therefore, a set of six 1's somewhere within the nine spaces in column c.
Since one of the constraints on the problems stated hereinabove is that there is no concavity in either the x or y direction, it is apparent that the ls in each row and column must all be adjacent to each other. If this contiguous set of 1's is placed at the upper end of column c it will be seen that squares 01 through 06 are occupied by the set. Similarly, if the set of contiguous ls is placed at the bottom of column c the ls will occupy the squares c4 through c9. This placement of the set in the uppermost and lowermost positions in the column shows an overlap or interaction of the two sets in spaces 04, c and c6. That is, when the contiguous set of six is in the uppermost position in column c, squares c4, c5, and c6 are occupied by ls and also, when the set is in the lowermost position the squares c4, c5, and c6 are occupied by l s. Therefore, according to Rule l proven ls are inserted in the centermost squares c4, c5, and c6, since the overlapping sets prove that this portion of the column must be within the closed curve. A moment's consideration will also confirm that any intermediate location (that is, away from the margins) of a contiguous set of six 1's in column 0 will have I s in the spaces c4, c5, and 66.
Rule I is also applied to column d of FIG. 48 wherein a set of seven contiguous ls is present and, by the same rationale, the two extreme sets overlap in spaces :8, d4, d5, d6, J7, and proven 1's are entered in those squares. In a similar manner, column e, which contains a set of six contiguous 1's, has proven l s entered in spaces e4, e5, and c6.
Rule I is then applied to the rows of the matrix in a similar manner as illustrated in FIG. 4C. Row 4 of the matrix is the first in which the set of occupied spaces exceeds half the length of the row, however, the center squares of row 4 are already occupied and no additional unoccupied squares are within overlapping sets of 4. Although row 5 has one more occupied space than row 4, the application of this procedure makes the outcome of row 5 of FIG. 4C is similar to row 4. Row 6 has a contiguous set of six ls within the seven squares of row 6 and the overlapping extreme left hand and extreme right hand sets establish that proven 1's can be entered in spaces b6, and f6, as well as in spaces c6, d6, and :6 which were previously occupied by proven l s. The new I s added by application of Rule I) to row 6 are underlined in drawings for purposes of illustration; and all 1's or 0's added in subsequent operations in FIG. 4 are designated by underlining while previously existing ls or 0s in the matrix have no underlining. Row 7 of FIG. 4C has a contiguous set of five ls and this set when shifted to the extreme left and right positions, respectively, overlaps in spaces c7, (U, and e7. New proven l s are therefore entered in previously unoccupied squares c7 and e7 as indicated by underlining.
Rule I) can also be stated algebraically that square or element A.xy=l, (or is occuplied by a 1) if (m-A ,+l) s y s A, for the x" column and similarly, A,.,,=l if (n-A,,+1) s x s A, for the y" row.
Applying the algebraic expression to column c of FIG. 48 wherein m=9, and A,=6, the expression then becomes (96+ l )sys 6(or 4 s y s 6, and proven is can be entered in spaces c4, c5 and 06). Application of Rule (1 to rows is, of course, similar.
Rule (2) can be stated in algebraic terms also. In a column the highest and lowest y values of squares occupied by 1's after application of Rule l are designated as y,,,,,, and y,,,,,,, respectively, (and similarly, x and x,,,,,, for a row). The condition where A =O in the 1: column is stated by either I s y s (y,,,,, ,.-AX); or (y,,,,,,+AX) s y s n, similarly, the square A is occupied by a 0 in the y row when l s .x s (x Ay); or (x,,,,,,+/ly) s x s m.
The algebraic expression of Rule (2) is applied to FIG. 4C beginning with row 3 which is the first row in which proven l 's are present. The equation I 5 x s (x,,,,, ,-Ay) reduces to l S x s (42). Since this is true, for x=l and x=2, proven zeros are entered in squares a3 and b3, that is, the first and second squares in row 3. The equation (X ml'Ay) S x s m reduces to (4+2) 5 x s 7 which is true for x=6 and .t=7, and therefore, proven 0's are entered in spaces )3, and g3, that is, the sixth and seventh spaces on row 3.
This result can be visualized in a different manner when it is recalled that a constraint on the shape of the closed curve is that the ls in a set are contiguous. In row 3, a l is already proven in space d3 and therefore all possible sets of two occupied spaces in row 3 must overlap on square d3. The balance of the set of two ls must therefore be in either square c3 or e3 and therefore cannot lie in any squares 03, b3, f3, or 33 in which proven 0's can therefore be inserted.
Similar application of Rule (2) to row 4 of FIG. 4C causes insertion of proven 0's in spaces a4 and 4.
When the rule is applied to row 5 the equation I s x s (x,,,,,,-Ay) reduces to l S x S (5-5) and (x,,,,,,+Ay) s x s m reduces to (3+5) s .r s 7, neither of which is true for any value of x and therefore no proven 0's can be inserted in row 6 merely by application of this rule.
Application of Rule (2) to the columns of the matrix is illustrated in FIG. 4D with the principle of the application being substantially the same as for the rows. Upon application of this rule proven 's are entered in squares bl, b2, cl, el,fl,f2, and )9 as indicated by underlining.
The first rule is used initially to find proven ls and since it works on the full matrix size, it is not employed again. The second rule and seven additional rules complete the first part of the algorithm for entering proven ls or proven 0s in the columns or rows of a matrix and these eight rules are repetitively applied to the problem to reach a solution. The next three additional rules are as follows:
3. Insert proven 1's in any unoccupied squares occurring in the same line (row or column) between two squares occupied by 1's.
4. Insert 0's into all unoccupied spaces that occur between the margin of the matrix and a space occupied by a 0, or between two 0's in the same line if the number of unoccupied spaces is insufficient to accomodate the required number of ls occurring in that line (that is, the value of A, or A,,).
5. Insert proven Is in all lines in which more than half of the usable" length of the line must be occupied in the same general manner as in Rule l The usable length of a line, m or n means the original length of the line in or n minus the total number of squares on the two ends of the line already occupied by Os. Thus, for example, the usable length of row 3 in FIG. 4C is equal to 3 units, that is equal to the original length n, or 7 units less 4, which is the sum of the proven 0's already present in the two ends of row 3. The algebraic expressions set forth hereinabove for application of Rule l) are applicable if m and n in these equations are replaced by m and n, respectively.
Application of Rule (4) to the rows of the matrix is illustrated in FIG. 4E. In row 2 of FIG. 4E a single space exists at a2 between a proven 0 and the margin, and the value of a, for row 2 is 2 units, that is, a set of two contiguous 1's must exist in row 2. This contiguous set cannot exist in the single space :12, and therefore, a 0 is inserted therein. Similarly, a O is inserted in space g2 of FIG. 4E. The rule cannot be applied in row 1 of FIG. 4E since row l has but a single l, or occupied space and spaces al and 31 are, therefore, not excluded merely by application of Rule (4).
The application of Rule (5) to the matrix is illustrated in FIG. 4F. Row 2 of FIG. 4F has a usable length of three units, that is, spaces c2, 0'2, and e2 which are not already occupied by proven Us. The required contiguous set (Ay) present in row 2 is two units or two ls, and by application of Rule (5) employing the formulas of Rule l with the usable length n substituted therein, it is found that square d2 is overlapped by the two extreme sets and a proven l is therefore inserted in square d2.
A corner rule can be stated which prevents decomposition of the enclosed areas within the curve into two separate curves. This is a consequence of the constraint that there be no .t or y concavity in the closed curve. A corollary of the con straint is that there is only a single closed curve within the matrix of interest. The corner rule can be stated as follows:
6. Insert (ls in all corner squares if the comer is surrounded by 0's in both directions.
The application of this rule to the exemplary matrix is illustrated in FIG. 4G wherein the comer squares a1 and g1 are followed by 0's in both column and row and therefore a proven 0 is inserted in each of these spaces despite the fact that sufficient room exists in the corner to accomodate the set ofone which is present in row 1.
Application of Rule (5) to columns is also illustrated in FIG. 4G and a proven l is entered in square b7 which square is within the overlapping protion of the extreme positions of a contiguous set of four ls in the 6 square usable length of column a. The application to columns is the same as application to rows described hereinabove.
An additional application of Rule (5) to row 2 is illustrated in FIG. 4F wherein will be noted that an additional proven l is added to column d. Therefore a repeated application of Rule (2) adds a proven 0 to square d9 since the equation (y,,,,,,+A,)s y s n; or (2+7) 5 y s 9, is true fory=9 (See FIG. 4H).
Three line completion rules complete the first part of the algorithm for solution of the problem of finding a closed curve.
7. Complete a line with 0's if the number of proven ls equals the total required A, or A, value.
8. Complete a line by inserting ls into all unoccupied spaces if the number of proven 0's equals m-A, or n-A,,, respectively.
9. Complete a line by adding the remaining ls (up to the total A, or A and Os ifa proven 1 occurs at a margin of the matrix or adjacent to a proven 0.
Application of Rule (8) is illustrated in FIG. 4H. Row I has a single unoccupied space at square d! and a single 1 (A1,) is present in row 1, therefore, a proven l is entered in space dl thereby completing this row. Rule (2) is also applied to row 7 in FIG. 4H to insert a proven 0 in space 37.
Application of rule 7 to the exemplary matrix is illustrated in FIG. 4| in column 4' wherein seven proven ls are already present and a proven 0 is therefore inserted in d8 to complete this column.
Examination of FIG. 4l shows that none of the abovementioned nine rules of the algorithm will permit or cause the insertion of any additional proven l s or proven 0's in the matrix and therefore a complete solution cannot be obtained with only these rules. The second part of the algorithm is therefore applied. This involves an arbitrary assignment of first a l and later a 0 (or vice versa) to an unoccupied square in the matrix. It is found that an arbitrary selection nearest a corner of the matrix yields a solution rapidly and in order to minimize the number of such arbitrary assignments in a practical situation, the assignments are always made nearest one corner of the matrix.
It has been found convenient to first make an arbitrary assignment of a I for the unoccupied space that is highest and nearest the left side of the matrix. For convenience, this is designated as the Northwest Corner Rule. As will be apparent hereinafter, it is also preferable to arbitrarily assign a value of 0 for the same blank space after a solution is obtained (if possible) for the assignment of a l to the unoccupied space. This is done so that if multiple solutions are possible, all will be identified.
Thus, as illustrated in FIG. 4.1, a value of 1 is arbitrarily assigned to square 02 which is the Northwest-most square in the matrix that is unoccupied. The solution then returns to a sequential application of Rules (2) through (9) to the matrix in substantially the same manner as hereinabove described, applying the rules to columns and rows alternately until either a solution is achieved or it is clear that no solution is possible without an additional application of the Northwest Corner Rule. Thus, by application of Rule (7) to rows in FIG. 4.], a proven 0 is entered in space e2 since the value of A, is two and the arbitrary assignment of a l to space c2 completes the set of ls in row 2. Referring to FIG. 4K, Rule (3) is applied and a proven l is inserted in square c3. Application of Rule (7) causes the insertion of proven 0's in spaces c8 and 09 thereby completing column 0. Application of Rule (7) for rows causes insertion of a proven O in space e3, thereupon application of Rule (8) to columns causes insertion of proven ls in spaces :8 and e9 thereby completing column d.
In FIG. 4L application of Rule (7) causes insertion of proven 0's in spaces a9, b9, and 9, thereby completing that row. Application of Rule (9) causes insertion of a proven l in space f8 and a proven 0 in space 8. Reapplication of Rule (9) to FIG. 4L completes row 8 by insertion of proven 0's in spaces 08 and b8.
Referring to FIG. 4M application of Rule (3) to columns inserts a proven l in space 17 and application of Rule (7 completes column f by insertion of proven 0's in spaces f4 and f5. Column b is completed by insertion of proven l s in spaces b4 and b5 according to Rule (8). Application of Rule (9) to row 5 inserts a proven I in space a5 and a proven in space 35 thereby completing that row. Application of Rule (7) to row 7 inserts proven 0's in spaces 07 and 37 thereby completing that row.
Application of Rule (7) in column a inserts a proven 0 in space 06 and application of Rule (8) completes column 3 as illustrated in FIG. 4N thereby yielding a solution to the problem and defining a region bounded by a closed curve as indicated by the bold outline in FIG. 4N.
It will be recalled that this solution was obtained by application of the Northwest Corner Rule wherein an arbitrary l was assigned to space c2 in order to obtain a solution after repeated application of the nine rules of the first part of the algorithm failed to establish any additional proven Is or proven 0's. Therefore, in order to complete the solution and find all possible closed curves fitting the input data A, and A, an arbitrary 0 is inserted in space 02 and solution for the closed curve is conducted in substantially the same manner as hereinabove described. Thus, as illustrated in FIG. 4-0, an arbitrary 0 is inserted in space c2 and row 2 is completed by insertion of a proven l in space e2 in accordance with Rule 8).
In FIG. 4? a proven 1 is inserted in space all in accord with Rule (3) and proven 0's are entered in spaces e8 and e9 in accordance with Rule (7) (or Rule (9)). Rule (7) is then applied to row 3 to insert a proven O at space c3 and column c is completed with proven ls in c8 and c9 in accord with Rule 8 Rule (7) completes row 9 as illustrated in FIG. 40 and Rule (9) is employed to complete row 8 in the same manner as hereinabove described.
Column b is complete by application of Rule (9) as illustrated in FIG. 4R; and application of Rule (5) to column f causes insertion of a proven l in space f5 in a manner substantially the same as hereinabove described. Row 4 is then completed by insertion of a proven O in space a4 in accord with Rule (4) followed by insertion of a proven l in space f4 and a proven O in space 34 in accord with Rule (9). Similarly, row 5 is completed in FIG. 4R by application ofRule (7).
The bounds of the closed curve are then defined by completing the matrix as illustrated in FIG. 45. Application of Rule (8) inserts a proven l in space g6 and therefore a proven O is inserted in space a6 in accord with Rule (7). Rule (8) causes insertion ofa proven l in space 07 and finally Rule (7) causes insertion of a O in space )7 to define the closed curve set forth in bold lines in FIG. 48 wherein all of the proven ls are within the region bounded by the curve and the proven 0's are all outside of the region bounded by the curve. It will be noted that the closed curve of FIG. 48 found by use ofa 0 in the Northwest Corner Rule is not a mirror solution of the closed curve of FIG. 4N found by application of a l in the Northwest Corner Rule. It will also be seen that the closed figure defined in FIG. 45 is identical to the closed curve from which the A t and A, curves where obtained, as illustrated in FIG. 3, thus showing that one of the two possible solutions of this particular problem is the correct solution. In this example both additions made in accord with the Northwest Comer Rule yielded possible solutions. In some instances one of the additions of a 1 or a 0 yields a situation where no solution is possible, such as, for example, presence of both a proven" l and a proven" O in the same space. Such a solution is rejected.
The question of multiple solutions of problems is seldom of any practical significance since other factors normally indicate which of two or more correct solutions truly is representative of the cross-section measured. Thus the ambiguity raised by multiple solutions is readily resolved, for example, by solving the problem for the same closed curve viewed from a third direction different from the original two directions. It may also occur that one of the "correct" solutions may be summarily rejected based on other emperical evidence or experience. Further, as a very practical matter, multiple solutions having significant differences therebetween, are relatively rare when the size of the matrix is increased significantly. In the example set forth hereinabove the matrix is only 7 units by 9 units, and two solutions are obtained having appreciably different shapes. On a matrix l28 l28 units, for example, it is found that ambiguous solutions of this nature are extremely rare and normally the multiple solutions which may occur are in one or two squares only, along the edge of the closed curve. The error" introduced by the occasional ambiguous solutions is usually small and often well with the errors present in originally gathering the input data.
It will often occur in application of the Northwest Corner Rule that one of the arbitrarily assigned values leads to no valid solution and in that situation no ambiguity at all exists. It may also occur in application of the Northwest Corner Rule that application of the nine rules of the first part of the algorithm may lead to another dead end" in which no additional proven 1's or proven 0's can be added to the matrix based on application of the nine rules alone. In that case the Northwest Comer Rule is again applied by successively adding a l and a O in another Northwest corner square as hereinabove described, and the nine rules of the algorithm are then applied with successive applications of the Northwest Comer Rule being employed as required until a solution is obtained. It will be recognized that it is possible at each application of the Northwest Comer Rule to double the number of possible solutions. it is found, however, that this does not ordinarily occur and may of the applications of the Northwest Corner Rule result in one of the arbitrary assignments yielding a situation where no solution is possible, such as, for example, a situation where an x or y concavity occurs or a line is filled with proven (T5 and less than a sufficient number of proven l's. These and other similar anomolous results are rejected.
The algorithm for finding the shape of a cross-section can be solved from A, and A, data in the manner pointed out hereinabove. It will also be apparent that the algorithm can be implemented with merely additions, subtractions, and comparisons and therefore a program is readily written for a general purpose computer so that the shape of the cross-section can be determined more rapidly for a large matrix than by a hand technique. The programming of a general purpose computer to determine the shape is quite effective for situations where the A, and A, data are consistent and the solution may proceed to completion with one or more shapes determined.
It may happen in practical situations, however, that inconsistent input data is involved so that a solution, whether worked out by a hand or by computer, indicates that both a proven l and a proven 0 occur in the same matrix location. This type of an inconsistency can very well arise in practical situations where measurement errors and rounding off to convert analog information to digital infonnation are present. Thus, for example, due to the afore-mentioned errors it is often found that densitometer scans of two X-ray photographs of an object, for example, yield A, and A, digital thickness curves which do not have exactly identical areas thereunder.
Although general purpose computer programs capable of handling many types of inconsistent data can be written, it is usually preferable for optimum operation that adjustment of the inconsistent data be based on partial solutions and involve the type of judgement that a skilled operator can employ. A preferred mode of solution for finding the closed curve or cross-section from A, and A, data, therefore first computes the proven regions within and without the closed curve to the extent possible by application of the above-described rules, and then employs human judgment to select near optimum variation from the inconsistent data to form a closed curve in accord with other evidence and experience.
Although a solution can be obtained with a general purpose computer, it is an inefficient utilization of such apparatus to compute the shape of a closed curve from thickness data since the general purpose computer does not allow convenient human interaction with the computer during operation of the

Claims (17)

1. A computer for determining the shape of a region in a matrix from a first profile and a second profile of dimensions of the region in two different directions comprising: a memory having a plurality of memory planes each having a corresponding matrix of memory elements in columns and rows; means for storing said first profile and said second profile as an area array in the matrix of at least some of said memory planes; means for correlating said stored area arrays for identifying a first group of memory elements in one of said memory planes forming a first area necessarily with said region; means for correlating said stored area arrays with said first group of memory elements for identifying a second group of memory elements forming a second area necessarily without said region; and means for converging said first area and said second Area for determining the boundary of said region.
2. A computer as defined in claim 1 wherein: said means for storing said profiles includes means for arranging the first profile along each of a pair of opposite margins of a pair of memory planes and for arranging the first profile along each of a pair of opposite margins of a pair of memory planes and for arranging the second profile along each of a pair of different opposite margins of another pair of memory planes; and said means for correlating said stored profiles for identifying a first area comprises means for detecting a region of overlap of the opposed first profiles and a region of overlap of the opposed second profiles, means for combining said regions of overlap, and means for storing said combined regions of overlap in a memory plane.
3. A computer as defined in claim 2 further comprising: means for adding said profiles to portions of said second area; means for storing the totals along respective opposite margins of separate memory planes; and means for correlating said stored totals comprising means for detecting a region of overlap of opposed stored totals and means for identifying an enlarged first area; and wherein said means for converging comprises means for repeating operation of said means for arranging, said means for adding, and said last mentioned means for correlating until no further change occurs in said first area or said second area.
4. A computer as defined in claim 3 further comprising: manual means for changing the state of selected memory elements of said memory.
5. A computer as defined in claim 1 wherein said memory elements are binary bits having a 1 state and an 0 state and said means for storing comprises: means for placing a first area array of 1''s along a margin of the matrix of a first one of the memory planes, said first array of 1''s having a boundary corresponding to the first profile; and means for placing a second area array of 1''s along a margin of the matrix of a second one of the memory planes, said margin being opposite to the margin of the first memory plane, said second array of 1''s having a boundary corresponding to the first profile; and wherein said means for correlating said stored profiles comprises means for scanning said column and rows of said matrix; means for detecting coincidence of 1''s in corresponding memory elements of the first memory plane and the second memory plane during the scanning; and means for storing 1''s in a third memory plane in memory elements having a location corresponding to the locations of coincidence.
6. A computer as defined in claim 1 further comprising: means for simultaneously displaying said first and second areas.
7. A computer as defined in claim 1 wherein said means for storing comprises: a binary counter; input means for presetting said counter to a binary number; means for simultaneously scanning a row of the matrix of memory elements; means for causing said counter to count; and means for setting the state of the scanned memory elements in response to the state of said counter.
8. A computer as defined in claim 1 further comprising input apparatus for setting a series of memory elements, the extent of said series being determined by an input number, comprising: a counter; means for presetting said counter to the input number; means for scanning a plurality of memory elements in sequence and synchronously causing said counter to count for each memory element so scanned; means for setting memory elements in response to a count state of said counter.
9. An apparatus as defined in claim 8 wherein: said counter counts backward from higher numbers towards zero; and said means for setting comprises means for setting memory elements to a selected state when the count on said counter is not zero.
10. An apparatus as defined in claim 8 wherein: said counter counts forward; and said means for setting comprises means for setting memory elements to a selected state when the count on said counter is after a preselected value.
11. A computer as defined in claim 1 further comprising: a display device; means for generating a digital matrix array of descrete display elements on said display device, said display elements being arranged in columns and rows and corresponding to one to one relationship to memory elements; intensity control means connected to said display device for selectively enhancing intensity of individual ones of the display elements of said matrix; means for setting said intensity control means for providing a first intensity of display elements within only a first selected region of said matrix; and means for selecting said first intensity of display elements of the display matrix in response to state of the corresponding memory element to said memory planes.
12. An apparatus as defined in claim 11 further comprising: means for setting said intensity control means for providing a second intensity of display elements within only a second selected region of said matrix; and means for selecting said second intensity of elements of the display matrix in response to state of elements of another of said memory planes.
13. An apparatus as defined in claim 12 further comprising: means for simultaneously selecting said first intensity in the first region and said second intensity in the second region for distinguishing separate regions on said display matrix.
14. An apparatus as defined in claim 13 further comprising means for setting said intensity control means for providing a third intensity of elements of the display matrix where said separate regions overlap.
15. Apparatus for determining the shape of a region bounded by a closed curve in a two dimensional matrix from first and second digital thickness profiles of said region comprising: a plurality of two dimensional matrixes of memory elements, each of the memory matrixes corresponding to the matrix in which the curve lies; first means for entering said first thickness profile as area arrays into first and second ones of said memory matrixes along each of two opposite margins thereof; second means for identifying a region of superposition of the two thickness profiles so arranged by said first means; third means for entering said second thickness profile as area arrays into second and third ones of said memory matrixes along each of another two opposite margins thereof; fourth means for identifying a region of superposition of the two thickness profiles so arranged by said third means and fifth means for superposing said first and second thickness profiles as area arrays on the combined regions of superposition found in previous operations; sixth means for identifying a second region beyond the extreme superpositions of said thickness profiles on the combined regions of superposition.
16. A computer for determining the shape of a region in a matrix of area units from first and second profiles of extent of the region in two mutually angulated directions comprising: a plurality of memory planes each having a matrix of memory elements corresponding to the area units; means for storing said region profiles in some of said memory planes with each area unit of a region profile stored in a corresponding memory element; means for comparing region profile units stored in memory elements of different memory planes to identify first and second groups of area units necessarily within said region and without said region respectively; means for reiteratively effecting said comparing to identify groups of area units progressively including more area units necessarily within and without said region; and means responsive to said means for storing, for indicating the shape of one of said groups of area units as indicated by the stored information in the memory elements.
17. A computer as defined in claim 16 wherein said means for comparing region profile units comprises: scanning means for sequentially processing each memory element in a memory plane; counter means responsive to state of memory elements for counting numbers of memory elements in a selected state in a memory plane; and means responsive to said counter means and said scanning means for setting the state of selected memory plane.
US800222A 1969-02-18 1969-02-18 Apparatus for determining shape Expired - Lifetime US3665419A (en)

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
US80022269A 1969-02-18 1969-02-18

Publications (1)

Publication Number Publication Date
US3665419A true US3665419A (en) 1972-05-23

Family

ID=25177811

Family Applications (1)

Application Number Title Priority Date Filing Date
US800222A Expired - Lifetime US3665419A (en) 1969-02-18 1969-02-18 Apparatus for determining shape

Country Status (1)

Country Link
US (1) US3665419A (en)

Cited By (13)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US3832693A (en) * 1971-08-29 1974-08-27 Fujitsu Ltd System for reading out the coordinates of information displayed on a matrix type display device
US4041468A (en) * 1976-10-07 1977-08-09 Pfizer Inc. Method and system for analysis of ambulatory electrocardiographic tape recordings
US4181971A (en) * 1976-02-09 1980-01-01 The University Of Akron Apparatus for presenting a sequence of fixed pictures
GB2163883A (en) * 1984-08-29 1986-03-05 Marconi Avionics Data processing
US5068799A (en) * 1985-04-24 1991-11-26 Jarrett Jr Harold M System and method for detecting flaws in continuous web materials
US5424981A (en) * 1984-10-05 1995-06-13 Hitachi, Ltd. Memory device
US5448519A (en) * 1984-10-05 1995-09-05 Hitachi, Ltd. Memory device
US5592649A (en) * 1984-10-05 1997-01-07 Hitachi, Ltd. RAM control method and apparatus for presetting RAM access modes
US5923591A (en) * 1985-09-24 1999-07-13 Hitachi, Ltd. Memory circuit
US6028795A (en) * 1985-09-24 2000-02-22 Hitachi, Ltd. One chip semiconductor integrated circuit device having two modes of data write operation and bits setting operation
US6522430B1 (en) * 1999-11-29 2003-02-18 Xerox Corporation Quantification of motion quality effect on image quality
US20110218763A1 (en) * 2010-03-05 2011-09-08 Mitutoyo Corporation Tolerance detection method and tolerance detection device for shape measuring apparatus
US20120048838A1 (en) * 2010-08-30 2012-03-01 Suzuki Motor Corporation Apparatus and Method for Determining Shape of End of Welding Bead

Cited By (25)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US3832693A (en) * 1971-08-29 1974-08-27 Fujitsu Ltd System for reading out the coordinates of information displayed on a matrix type display device
US4181971A (en) * 1976-02-09 1980-01-01 The University Of Akron Apparatus for presenting a sequence of fixed pictures
US4041468A (en) * 1976-10-07 1977-08-09 Pfizer Inc. Method and system for analysis of ambulatory electrocardiographic tape recordings
GB2163883A (en) * 1984-08-29 1986-03-05 Marconi Avionics Data processing
US5719809A (en) * 1984-10-05 1998-02-17 Hitachi, Ltd. Memory device
US5838337A (en) * 1984-10-05 1998-11-17 Hitachi, Ltd. Graphic system including a plurality of one chip semiconductor integrated circuit devices for displaying pixel data on a graphic display
US5448519A (en) * 1984-10-05 1995-09-05 Hitachi, Ltd. Memory device
US5475636A (en) * 1984-10-05 1995-12-12 Hitachi, Ltd. Memory device
US5493528A (en) * 1984-10-05 1996-02-20 Hitachi, Ltd. Memory device
US5499222A (en) * 1984-10-05 1996-03-12 Hitachi, Ltd. Memory device
US5523973A (en) * 1984-10-05 1996-06-04 Hitachi, Ltd. Memory device
US5592649A (en) * 1984-10-05 1997-01-07 Hitachi, Ltd. RAM control method and apparatus for presetting RAM access modes
US6643189B2 (en) 1984-10-05 2003-11-04 Hitachi, Ltd. Memory device
US5767864A (en) * 1984-10-05 1998-06-16 Hitachi, Ltd. One chip semiconductor integrated circuit device for displaying pixel data on a graphic display
US5781479A (en) * 1984-10-05 1998-07-14 Hitachi, Ltd. Memory device
US5424981A (en) * 1984-10-05 1995-06-13 Hitachi, Ltd. Memory device
US6359812B2 (en) 1984-10-05 2002-03-19 Hitachi, Ltd. Memory device
US5068799A (en) * 1985-04-24 1991-11-26 Jarrett Jr Harold M System and method for detecting flaws in continuous web materials
US6028795A (en) * 1985-09-24 2000-02-22 Hitachi, Ltd. One chip semiconductor integrated circuit device having two modes of data write operation and bits setting operation
US5923591A (en) * 1985-09-24 1999-07-13 Hitachi, Ltd. Memory circuit
US6522430B1 (en) * 1999-11-29 2003-02-18 Xerox Corporation Quantification of motion quality effect on image quality
US20110218763A1 (en) * 2010-03-05 2011-09-08 Mitutoyo Corporation Tolerance detection method and tolerance detection device for shape measuring apparatus
US9486889B2 (en) * 2010-03-05 2016-11-08 Mitutoyo Corporation Tolerance detection method and tolerance detection device for shape measuring apparatus
US20120048838A1 (en) * 2010-08-30 2012-03-01 Suzuki Motor Corporation Apparatus and Method for Determining Shape of End of Welding Bead
US8946595B2 (en) * 2010-08-30 2015-02-03 Suzuki Motor Corporation Apparatus and method for determining shape of end of welding bead

Similar Documents

Publication Publication Date Title
US3665419A (en) Apparatus for determining shape
US3673394A (en) Measuring method and apparatus
Rajon et al. Marching cube algorithm: review and trilinear interpolation adaptation for image-based dosimetric models
Kennard et al. Computer aided design of experiments
US4087788A (en) Data compression system
Conroy et al. Noninvasive three-dimensional computer imaging of matrix-filled fossil skulls by high-resolution computed tomography
US5412763A (en) Method for displaying an image of a portion of the inside of a three-dimensional physical structure
US3833796A (en) Method and apparatus for chromosome digitizing
Schmidlin Iterative separation of sections in tomographic scintigrams
US4450483A (en) Circuit for improving the quality of digitized line images
JPH0776989B2 (en) Method and apparatus for generating two-dimensional image of three-dimensional object
Van Der Knaap The vector to raster conversion:(mis) use in geographical information systems
JPH0695343B2 (en) Method and apparatus for determining bound substructures in an object, and method and apparatus for determining labeled objects of the same type
Cho et al. Computerized image reconstruction methods with multiple photon/X-ray transmission scanning
US20060267974A1 (en) Method and program for labeling multi material data
Chakraborty et al. Quantitative versus subjective evaluation of mammography accreditation phantom images
US4310853A (en) Data simulation in sector scan imaging systems
Lubs et al. Automated analysis of differentially stained human chromosomes
US5926576A (en) Imaging method and system concatenating image data values to form an integer, partition the integer, and arithmetically encode bit position counts of the integer
Herman Mathematical optimization versus practical performance: A case study based on the maximum entropy criterion in image reconstruction
Ledley Analysis of cells
US4899294A (en) Graphics processing system
JPS63168152A (en) Medical image processing method
EP0067057A2 (en) Apparatus for determining relationships between elements in accordance with shared attributes
Kuhl et al. A hybrid processor for modifying and rearranging radionuclide scan data under direct observation